Rosina Philipp, Grube Martin
Department of Biology, University of Graz, Graz, Austria.
J R Soc Interface. 2025 Mar;22(224):20240720. doi: 10.1098/rsif.2024.0720. Epub 2025 Mar 5.
is a slime mould that forms complex networks, making it an ideal model organism for studying network formation and adaptation. We introduce a novel viscometer capable of accurately measuring extracellular slime matrix (ECM) viscosity in small biological samples, overcoming the limitations of conventional instruments. Using this device, we measured the relative kinematic viscosity and developed continuous models to predict network size over time as a function of ECM viscosity. Our results show that increased ECM viscosity, driven by higher salt (MgCl·6HO) concentrations, significantly slows network expansion but does not affect the final network complexity. Fractal dimension analysis revealed that network complexity converged to a similar value across all viscosity conditions during the equilibrium state. The models demonstrated strong predictive power, with a mean squared error below 0.4%, closely aligning with experimental data. These findings highlight the critical role of ECM viscosity in influencing network expansion while demonstrating that complexity remains stable across varying conditions. This study advances our understanding of the physical parameters shaping networks and provides a foundation for exploring network dynamics in other adaptive systems. These insights offer new tools for research in biological systems where sample material is limited.
是一种形成复杂网络的黏菌,使其成为研究网络形成和适应性的理想模式生物。我们引入了一种新型粘度计,能够精确测量小生物样本中细胞外黏液基质(ECM)的粘度,克服了传统仪器的局限性。使用该设备,我们测量了相对运动粘度,并开发了连续模型来预测网络大小随时间的变化,作为ECM粘度的函数。我们的结果表明,由较高盐(MgCl·6H₂O)浓度驱动的ECM粘度增加,显著减缓了网络扩展,但不影响最终网络复杂性。分形维数分析表明,在平衡状态下,所有粘度条件下网络复杂性都收敛到相似的值。这些模型显示出强大的预测能力,均方误差低于0.4%,与实验数据紧密吻合。这些发现突出了ECM粘度在影响网络扩展中的关键作用,同时表明在不同条件下复杂性保持稳定。这项研究推进了我们对塑造网络的物理参数的理解,并为探索其他自适应系统中的网络动态提供了基础。这些见解为生物系统中样本材料有限的研究提供了新工具。